基于Kinect传感器和Windows Azure云技术的人脸识别系统

D. Dobrea, Daniel Maxim, Stefan Ceparu
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引用次数: 12

摘要

本文的目的是建立一个基于人脸识别的人体检测系统。目前最先进的人脸识别算法在计算、能量和内存等成本要求较高的基础上获得了较高的识别率。由于现有的限制:计算能力和内存,在嵌入式系统上使用这些经典算法无法达到这样的性能。我们的目标是开发一种廉价、实时的嵌入式系统,能够在不影响系统准确性的情况下识别人脸。该系统专为汽车工业、智能家居应用和安全系统而设计。为了获得更好的实时性能(更高的识别率),将新技术的最佳组合用于人脸检测和分类。人脸检测系统采用了微软Kinect传感器的骨骼跟踪功能。更准确地说,人脸识别——神经网络的训练,是软件中计算最密集的部分,是基于Windows azure云技术实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A face recognition system based on a Kinect sensor and Windows Azure cloud technology
The aim of this paper is to build a system for human detection based on facial recognition. The state-of-the-art face recognition algorithms obtain high recognition rates base on demanding costs - computational, energy and memory. The use of these classical algorithms on an embedded system cannot achieve such performances due to the existing constrains: computational power and memory. Our objective is to develop a cheap, real time embedded system able to recognize faces without any compromise on system's accuracy. The system is designed for automotive industry, smart house application and security systems. To achieve superior performance (higher recognition rates) in real time, an optimum combination of new technologies was used for detection and classification of faces. The face detection system uses skeletal-tracking feature of Microsoft Kinect sensor. The face recognition, more precisely - the training of neural network, the most computing-intensive part of the software, is achieved based on the Windows Azures cloud technology.
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